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Identification of a multivariate fermentation process using constructive learning

机译:使用建设性学习识别多变量发酵过程

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In the present work, a constructive learning algorithm is employed to design an optimal one-hidden neural network structure that best approximates a given mapping. The method determines not only the optimal number of hidden neurons but also the best activation function for each node. Here, the projection pursuit technique is applied in association with the optimization of the solvability condition, giving rise to a more efficient and accurate computational learning algorithm. As each activation function of a hidden neuron is optimally defined for every approximation problem, better rates of convergence are achieved. Since the training process operates the hidden neurons individually, a pertinent activation function employing Hermite polynomials can be iteratively developed for each neuron as a function of the learning set. The proposed constructive learning algorithm was successfully applied to identify a large-scale multivariate process, providing a multivariable model that was able to describe the complex process dynamics, even in long-range horizon predictions.
机译:在本作工作中,采用建设性学习算法来设计最佳的一个隐藏神经网络结构,其最能近似于给定的映射。该方法不仅确定隐藏神经元的最佳数量,而且确定每个节点的最佳激活功能。这里,投影追踪技术与优化可加工条件的优化相关联,从而产生更有效和更准确的计算学习算法。由于针对每个近似问题最佳地定义了隐藏神经元的每个激活功能,因此实现了更好的收敛速率。由于训练过程单独操作隐藏神经元,因此可以针对每个神经元作为学习集的函数来迭代地开发采用Hermite多项式的相关激活函数。建议的建设性学习算法成功应用于识别大规模的多变量过程,提供了一种能够描述复杂过程动态的多变量模型,即使在远程地平线预测中也是如此。

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